{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 1,
   "id": "ebb23efa-622c-468b-822b-3a1ca8f8d1d3",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/svg+xml": [
       "<?xml version=\"1.0\" encoding=\"utf-8\" standalone=\"no\"?>\n",
       "<!DOCTYPE svg PUBLIC \"-//W3C//DTD SVG 1.1//EN\"\n",
       "  \"http://www.w3.org/Graphics/SVG/1.1/DTD/svg11.dtd\">\n",
       "<svg xmlns:xlink=\"http://www.w3.org/1999/xlink\" width=\"250.345337pt\" height=\"164.997876pt\" viewBox=\"0 0 250.345337 164.997876\" xmlns=\"http://www.w3.org/2000/svg\" version=\"1.1\">\n",
       " <metadata>\n",
       "  <rdf:RDF xmlns:dc=\"http://purl.org/dc/elements/1.1/\" xmlns:cc=\"http://creativecommons.org/ns#\" xmlns:rdf=\"http://www.w3.org/1999/02/22-rdf-syntax-ns#\">\n",
       "   <cc:Work>\n",
       "    <dc:type rdf:resource=\"http://purl.org/dc/dcmitype/StillImage\"/>\n",
       "    <dc:date>2023-03-05T11:44:27.193342</dc:date>\n",
       "    <dc:format>image/svg+xml</dc:format>\n",
       "    <dc:creator>\n",
       "     <cc:Agent>\n",
       "      <dc:title>Matplotlib v3.5.1, https://matplotlib.org/</dc:title>\n",
       "     </cc:Agent>\n",
       "    </dc:creator>\n",
       "   </cc:Work>\n",
       "  </rdf:RDF>\n",
       " </metadata>\n",
       " <defs>\n",
       "  <style type=\"text/css\">*{stroke-linejoin: round; stroke-linecap: butt}</style>\n",
       " </defs>\n",
       " <g id=\"figure_1\">\n",
       "  <g id=\"patch_1\">\n",
       "   <path d=\"M 0 164.997876 \n",
       "L 250.345337 164.997876 \n",
       "L 250.345337 0 \n",
       "L 0 0 \n",
       "L 0 164.997876 \n",
       "z\n",
       "\" style=\"fill: none\"/>\n",
       "  </g>\n",
       "  <g id=\"axes_1\">\n",
       "   <g id=\"patch_2\">\n",
       "    <path d=\"M 39.65 141.119751 \n",
       "L 234.95 141.119751 \n",
       "L 234.95 10.951538 \n",
       "L 39.65 10.951538 \n",
       "z\n",
       "\" style=\"fill: #ffffff\"/>\n",
       "   </g>\n",
       "   <g clip-path=\"url(#p31268ddf2d)\">\n",
       "    <image xlink:href=\"data:image/png;base64,\n",
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     "metadata": {
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     "output_type": "display_data"
    }
   ],
   "source": [
    "%matplotlib inline\n",
    "import numpy as np\n",
    "import mindspore\n",
    "import mindspore.ops as ops\n",
    "import mindspore.nn as nn\n",
    "import mindspore.dataset.vision as vision\n",
    "import mindspore.dataset.transforms as transforms\n",
    "from mindspore import Parameter\n",
    "from mindspore.common.initializer import initializer\n",
    "from d2l import mindspore as d2l\n",
    "\n",
    "d2l.set_figsize()\n",
    "content_img = d2l.Image.open('../img/rainier.jpg')\n",
    "d2l.plt.imshow(content_img);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "id": "e5b59b88-1008-4f7a-91f9-ce8623908676",
   "metadata": {},
   "outputs": [
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   ],
   "source": [
    "style_img = d2l.Image.open('../img/autumn-oak.jpg')\n",
    "d2l.plt.imshow(style_img);"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "id": "8be84b31-82df-44d2-8cc2-d88e67ae3cf1",
   "metadata": {},
   "outputs": [],
   "source": [
    "rgb_mean = [0.485 * 255, 0.456 * 255, 0.406 * 255]\n",
    "rgb_std = [0.229 * 255, 0.224 * 255, 0.225 * 255]\n",
    "\n",
    "def preprocess(img, image_shape):\n",
    "    transform = transforms.Compose([\n",
    "        vision.Resize(image_shape),\n",
    "        vision.Normalize(mean=rgb_mean, std=rgb_std),\n",
    "        vision.HWC2CHW(),\n",
    "        vision.ToNumpy()\n",
    "    ])\n",
    "    return mindspore.Tensor(transform(img))\n",
    "\n",
    "def postprocess(img):\n",
    "    img = img[0]\n",
    "    #print(img)\n",
    "    img = ops.maximum(img.permute(1, 2, 0) * rgb_std + rgb_mean, 0)\n",
    "    img = ops.minimum(img, 255)\n",
    "    img = img.asnumpy().astype('uint8')\n",
    "    return vision.ToPIL()(img)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "id": "288f41b8-af2a-4660-8920-38c2850d360c",
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "[WARNING] ME(176498:281473357277760,MainProcess):2023-03-05-11:44:28.109.735 [mindspore/common/api.py:840] 'mindspore.ms_class' will be deprecated and removed in a future version. Please use 'mindspore.jit_class' instead.\n",
      "[WARNING] ME(176498:281473357277760,MainProcess):2023-03-05-11:44:28.143.843 [mindspore/common/api.py:694] 'mindspore.ms_function' will be deprecated and removed in a future version. Please use 'mindspore.jit' instead.\n",
      "[WARNING] ME(176498:281473357277760,MainProcess):2023-03-05-11:44:28.146.711 [mindspore/common/api.py:694] 'mindspore.ms_function' will be deprecated and removed in a future version. Please use 'mindspore.jit' instead.\n",
      "WARNING:root:This parameter `keep_prob` will be deprecated, please use `p` instead.\n",
      "WARNING:root:This parameter `keep_prob` will be deprecated, please use `p` instead.\n",
      "[WARNING] ME(176498:281473357277760,MainProcess):2023-03-05-11:44:32.774.459 [mindspore/train/serialization.py:1024] For 'load_param_into_net', 1 parameters in the 'net' are not loaded, because they are not in the 'parameter_dict', please check whether the network structure is consistent when training and loading checkpoint.\n",
      "[WARNING] ME(176498:281473357277760,MainProcess):2023-03-05-11:44:32.777.162 [mindspore/train/serialization.py:1026] classifier.6.weight is not loaded.\n"
     ]
    }
   ],
   "source": [
    "import mindcv\n",
    "\n",
    "pretrained_net = mindcv.create_model('vgg19', pretrained=False)\n",
    "param = mindspore.load_checkpoint('./1.ckpt')\n",
    "net = mindspore.load_param_into_net(pretrained_net, param)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "id": "1adbb1d0-161b-467b-af1b-f92c3b9a071e",
   "metadata": {},
   "outputs": [],
   "source": [
    "style_layers, content_layers = [0, 5, 10, 19, 28], [25]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "id": "73458d34-f497-4580-baaa-0cf86a5688f3",
   "metadata": {},
   "outputs": [],
   "source": [
    "net = nn.SequentialCell(*[pretrained_net.features[i] for i in\n",
    "                      range(max(content_layers + style_layers) + 1)])"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "id": "e7d49ec1-d395-4021-8fb9-277fa92edb87",
   "metadata": {},
   "outputs": [],
   "source": [
    "def extract_features(X, content_layers, style_layers):\n",
    "    contents = []\n",
    "    styles = []\n",
    "    for i in range(len(net)):\n",
    "        X = net[i](X)\n",
    "        if i in style_layers:\n",
    "            styles.append(X)\n",
    "        if i in content_layers:\n",
    "            contents.append(X)\n",
    "    return contents, styles"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "id": "77d3ec15-df0c-4da1-8d0d-9ffc76f4e87e",
   "metadata": {},
   "outputs": [],
   "source": [
    "def get_contents(image_shape):\n",
    "    content_X = preprocess(content_img, image_shape)\n",
    "    contents_Y, _ = extract_features(content_X, content_layers, style_layers)\n",
    "    #print(contents_Y)\n",
    "    return content_X, contents_Y\n",
    "\n",
    "def get_styles(image_shape):\n",
    "    style_X = preprocess(style_img, image_shape)\n",
    "    _, styles_Y = extract_features(style_X, content_layers, style_layers)\n",
    "    return style_X, styles_Y"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 9,
   "id": "5773c5f2-6ad8-485a-b55f-fe8b02a1d609",
   "metadata": {},
   "outputs": [],
   "source": [
    "def content_loss(Y_hat, Y):\n",
    "    # 我们从动态计算梯度的树中分离目标：\n",
    "    # 这是一个规定的值，而不是一个变量。\n",
    "    return ops.square(Y_hat - Y).mean()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 10,
   "id": "087cf0b7-7097-494f-9ef3-f66a04d81e2c",
   "metadata": {},
   "outputs": [],
   "source": [
    "def gram(X):\n",
    "    num_channels, n = X.shape[1], X.numel() // X.shape[1]\n",
    "    X = X.reshape((num_channels, n))\n",
    "    return ops.matmul(X, X.T) / (num_channels * n)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 11,
   "id": "934ffff3-4418-47cd-b492-d261cbf6a1f8",
   "metadata": {},
   "outputs": [],
   "source": [
    "def style_loss(Y_hat, gram_Y):\n",
    "    #print(ops.square(gram(Y_hat) - gram_Y).mean())\n",
    "    return ops.square(gram(Y_hat) - gram_Y).mean()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 12,
   "id": "51e7fbac-23c1-4a27-a793-6a50299e28f2",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "Tensor(shape=[], dtype=Int64, value= 13)"
      ]
     },
     "execution_count": 12,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "import numpy as np\n",
    "a = d2l.Tensor([[1,2,3],[4,5,6]])\n",
    "b = d2l.Tensor([[5,6,9],[2,3,4]])\n",
    "#print(ops.square(a - b))\n",
    "ops.square(a - b).mean()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 13,
   "id": "f8cd43aa-2cd3-4c29-a70a-f18c501fd50b",
   "metadata": {},
   "outputs": [],
   "source": [
    "def tv_loss(Y_hat):\n",
    "    return 0.5 * (ops.abs(Y_hat[:, :, 1:, :] - Y_hat[:, :, :-1, :]).mean() +\n",
    "                  ops.abs(Y_hat[:, :, :, 1:] - Y_hat[:, :, :, :-1]).mean())"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 14,
   "id": "524f0f4a-5962-450c-860e-6cd7ae58f8f6",
   "metadata": {},
   "outputs": [],
   "source": [
    "content_weight, style_weight, tv_weight = 1, 1e, 10\n",
    "\n",
    "def compute_loss(X, contents_Y_hat, styles_Y_hat, contents_Y, styles_Y_gram):\n",
    "    # 分别计算内容损失、风格损失和全变分损失\n",
    "    contents_l = [content_loss(Y_hat, Y) * content_weight for Y_hat, Y in zip(\n",
    "        contents_Y_hat, contents_Y)]\n",
    "    styles_l = [style_loss(Y_hat, Y) * style_weight for Y_hat, Y in zip(\n",
    "        styles_Y_hat, styles_Y_gram)]\n",
    "    #print(f\"styles_l={styles_l}\")\n",
    "    tv_l = tv_loss(X) * tv_weight\n",
    "    # 对所有损失求和\n",
    "    l = sum(10 * styles_l + contents_l + [tv_l])\n",
    "    return contents_l, styles_l, tv_l, l"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 15,
   "id": "7145a240-1a1a-462c-83e7-a909fd5c4c2e",
   "metadata": {},
   "outputs": [],
   "source": [
    "class SynthesizedImage(nn.Cell):\n",
    "    def __init__(self, img_shape):\n",
    "        super().__init__()\n",
    "        self.weight = Parameter(ops.rand(*img_shape))\n",
    "\n",
    "    def construct(self):\n",
    "        return mindspore.Tensor(self.weight)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 16,
   "id": "3936bb7b-5337-47ce-8531-51f927c98a5b",
   "metadata": {},
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   "source": [
    "class Network(nn.Cell):\n",
    "    def __init__(self, X, img_shape):\n",
    "        super().__init__(img_shape)\n",
    "        self.weight = Parameter(initializer(X, img_shape, mindspore.float32))\n",
    "\n",
    "    def construct(self):\n",
    "        contents_Y_hat, styles_Y_hat = extract_features(self.weight, content_layers, style_layers)\n",
    "        return mindspore.Tensor(self.weight), contents_Y_hat, styles_Y_hat"
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  },
  {
   "cell_type": "code",
   "execution_count": 17,
   "id": "aa61c248-216d-4983-872e-de00b00852a3",
   "metadata": {},
   "outputs": [],
   "source": [
    "def get_inits(X, lr, styles_Y, lr_decay_epoch, num_epochs):\n",
    "    gen_img = SynthesizedImage(X.shape)\n",
    "    gen_img.weight.set_data(\n",
    "                    initializer(X, gen_img.weight.shape, gen_img.weight.dtype))\n",
    "    styles_Y_gram = [gram(Y) for Y in styles_Y]\n",
    "    return gen_img(), styles_Y_gram"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "id": "820e2f4a-1057-4721-91ad-8bd14e04b535",
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       " </defs>\n",
       "</svg>\n"
      ],
      "text/plain": [
       "<Figure size 504x180 with 2 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "def train(X, contents_Y, styles_Y, lr, num_epochs, lr_decay_epoch):\n",
    "    X, styles_Y_gram = get_inits(X, lr, styles_Y, lr_decay_epoch, num_epochs)\n",
    "    network = Network(X, X.shape)\n",
    "    lr_list = d2l.tensor([lr*(0.8**(i//lr_decay_epoch)) \n",
    "                      for i in range(num_epochs)])\n",
    "    trainer = nn.Adam(network.get_parameters(), lr=lr_list)\n",
    "    animator = d2l.Animator(xlabel='epoch', ylabel='loss',\n",
    "                            xlim=[10, num_epochs],\n",
    "                            legend=['content', 'style', 'TV'],\n",
    "                            ncols=2, figsize=(7, 2.5))\n",
    "    \n",
    "    for epoch in range(num_epochs):\n",
    "        # 定义前向网络\n",
    "        def forward_fn():\n",
    "            X, contents_Y_hat, styles_Y_hat = network()\n",
    "            contents_l, styles_l, tv_l, l = compute_loss(X, contents_Y_hat, styles_Y_hat, contents_Y, styles_Y_gram)\n",
    "            return l\n",
    "        #print(forward_fn())\n",
    "        X, contents_Y_hat, styles_Y_hat = network()\n",
    "        grad_fn = mindspore.value_and_grad(forward_fn, grad_position=None, weights=network.trainable_params())\n",
    "        l, grads = grad_fn()\n",
    "        trainer(grads)\n",
    "        #print(network()[0])\n",
    "    \n",
    "\n",
    "        X, contents_Y_hat, styles_Y_hat = network()\n",
    "        contents_l, styles_l, tv_l, l = compute_loss(X, contents_Y_hat, styles_Y_hat, contents_Y, styles_Y_gram)\n",
    "        #print(contents_l, styles_l, tv_l, l)\n",
    "\n",
    "        if (epoch + 1) % 10 == 0:\n",
    "            animator.axes[1].imshow(postprocess(X))\n",
    "            animator.add(epoch + 1, [float(sum(contents_l)),\n",
    "                                     float(sum(styles_l)), float(tv_l)])\n",
    "    \n",
    "  \n",
    "    return X\n",
    "image_shape = (300, 450)\n",
    "content_X, contents_Y = get_contents(image_shape)\n",
    "_, styles_Y = get_styles(image_shape)\n",
    "output = train(content_X, contents_Y, styles_Y, 0.3, 500, 50)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "id": "fbeea818-dca5-43e1-a664-9ce338a1c55b",
   "metadata": {},
   "outputs": [],
   "source": []
  }
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